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Mixture design screening
Hi
I have four factors (A, B, C, D); out of that, I need to use only 3 at a time (either A, C, D or B, C, D at a single run) and the sum of three should be 100.
How can I do that in a single mixture design
Accepted Solutions
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Re: Mixture design screening
Hi @Statexplorer,
The following discussion is very similar to your topic and might help you or the other JMP Users create a Custom mixture design respecting the constraint (even if you already found a solution) : Help needed with custom DOE with complex constraints.
Also with Classical Mixture designs platform there are other options (when/if applicable) :
- Without factors ranges restrictions and linear constraints: choosing a Simplex Centroïd design with K=3 generates a design with up to 3 factors in each experiment :
- With factors ranges restrictions and/or linear constraints: choosing an Extreme Vertices design of degree K=3 generates a design with up to 3 factors in each experiment :
Hope this answer may help other users in the Community,
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)
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Re: Mixture design screening
Solved thanks, no need a solution.
- Mark as New
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Re: Mixture design screening
Hi @Statexplorer,
The following discussion is very similar to your topic and might help you or the other JMP Users create a Custom mixture design respecting the constraint (even if you already found a solution) : Help needed with custom DOE with complex constraints.
Also with Classical Mixture designs platform there are other options (when/if applicable) :
- Without factors ranges restrictions and linear constraints: choosing a Simplex Centroïd design with K=3 generates a design with up to 3 factors in each experiment :
- With factors ranges restrictions and/or linear constraints: choosing an Extreme Vertices design of degree K=3 generates a design with up to 3 factors in each experiment :
Hope this answer may help other users in the Community,
"It is not unusual for a well-designed experiment to analyze itself" (Box, Hunter and Hunter)